我的编程空间,编程开发者的网络收藏夹
学习永远不晚

python通过Seq2Seq实现闲聊机器人

短信预约 -IT技能 免费直播动态提醒
省份

北京

  • 北京
  • 上海
  • 天津
  • 重庆
  • 河北
  • 山东
  • 辽宁
  • 黑龙江
  • 吉林
  • 甘肃
  • 青海
  • 河南
  • 江苏
  • 湖北
  • 湖南
  • 江西
  • 浙江
  • 广东
  • 云南
  • 福建
  • 海南
  • 山西
  • 四川
  • 陕西
  • 贵州
  • 安徽
  • 广西
  • 内蒙
  • 西藏
  • 新疆
  • 宁夏
  • 兵团
手机号立即预约

请填写图片验证码后获取短信验证码

看不清楚,换张图片

免费获取短信验证码

python通过Seq2Seq实现闲聊机器人

一、准备训练数据

主要的数据有两个:

1.小黄鸡的聊天语料:噪声很大

2.微博的标题和评论:质量相对较高

二、数据的处理和保存

由于数据中存到大量的噪声,可以对其进行基础的处理,然后分别把input和target使用两个文件保存,即input中的第N行尾问,target的第N行为答

后续可能会把单个字作为特征(存放在input_word.txt),也可能会把词语作为特征(input.txt)

2.1 小黄鸡的语料的处理


def format_xiaohuangji_corpus(word=False):
    """处理小黄鸡的语料"""
    if word:
        corpus_path = "./chatbot/corpus/xiaohuangji50w_nofenci.conv"
        input_path = "./chatbot/corpus/input_word.txt"
        output_path = "./chatbot/corpus/output_word.txt"
    else:
 
        corpus_path = "./chatbot/corpus/xiaohuangji50w_nofenci.conv"
        input_path = "./chatbot/corpus/input.txt"
        output_path = "./chatbot/corpus/output.txt"
 
    f_input = open(input_path, "a")
    f_output = open(output_path, "a")
    pair = []
    for line in tqdm(open(corpus_path), ascii=True):
        if line.strip() == "E":
            if not pair:
                continue
            else:
                assert len(pair) == 2, "长度必须是2"
                if len(pair[0].strip()) >= 1 and len(pair[1].strip()) >= 1:
                    f_input.write(pair[0] + "\n")
                    f_output.write(pair[1] + "\n")
                pair = []
        elif line.startswith("M"):
            line = line[1:]
            if word:
                pair.append(" ".join(list(line.strip())))
            else:
                pair.append(" ".join(jieba_cut(line.strip())))

2.2 微博语料的处理


def format_weibo(word=False):
    """
    微博数据存在一些噪声,未处理
    :return:
    """
    if word:
        origin_input = "./chatbot/corpus/stc_weibo_train_post"
        input_path = "./chatbot/corpus/input_word.txt"
 
        origin_output = "./chatbot/corpus/stc_weibo_train_response"
        output_path = "./chatbot/corpus/output_word.txt"
 
    else:
        origin_input = "./chatbot/corpus/stc_weibo_train_post"
        input_path = "./chatbot/corpus/input.txt"
 
        origin_output = "./chatbot/corpus/stc_weibo_train_response"
        output_path = "./chatbot/corpus/output.txt"
 
    f_input = open(input_path, "a")
    f_output = open(output_path, "a")
    with open(origin_input) as in_o, open(origin_output) as out_o:
        for _in, _out in tqdm(zip(in_o, out_o), ascii=True):
            _in = _in.strip()
            _out = _out.strip()
 
            if _in.endswith(")") or _in.endswith("」") or _in.endswith(")"):
                _in = re.sub("(.*)|「.*?」|\(.*?\)", " ", _in)
            _in = re.sub("我在.*?alink|alink|(.*?\d+x\d+.*?)|#|】|【|-+|_+|via.*?:*.*", " ", _in)
 
            _in = re.sub("\s+", " ", _in)
            if len(_in) < 1 or len(_out) < 1:
                continue
 
            if word:
                _in = re.sub("\s+", "", _in)  # 转化为一整行,不含空格
                _out = re.sub("\s+", "", _out)
                if len(_in) >= 1 and len(_out) >= 1:
                    f_input.write(" ".join(list(_in)) + "\n")
                    f_output.write(" ".join(list(_out)) + "\n")
            else:
                if len(_in) >= 1 and len(_out) >= 1:
                    f_input.write(_in.strip() + "\n")
                    f_output.write(_out.strip() + "\n")
 
    f_input.close()
    f_output.close()

2.3 处理后的结果

三、构造文本序列化和反序列化方法

和之前的操作相同,需要把文本能转化为数字,同时还需实现方法把数字转化为文本

示例代码:


import config
import pickle
 
 
class Word2Sequence():
    UNK_TAG = "UNK"
    PAD_TAG = "PAD"
    SOS_TAG = "SOS"
    EOS_TAG = "EOS"
 
    UNK = 0
    PAD = 1
    SOS = 2
    EOS = 3
 
    def __init__(self):
        self.dict = {
            self.UNK_TAG: self.UNK,
            self.PAD_TAG: self.PAD,
            self.SOS_TAG: self.SOS,
            self.EOS_TAG: self.EOS
        }
        self.count = {}
        self.fited = False
 
    def to_index(self, word):
        """word -> index"""
        assert self.fited == True, "必须先进行fit操作"
        return self.dict.get(word, self.UNK)
 
    def to_word(self, index):
        """index -> word"""
        assert self.fited, "必须先进行fit操作"
        if index in self.inversed_dict:
            return self.inversed_dict[index]
        return self.UNK_TAG
 
    def __len__(self):
        return len(self.dict)
 
    def fit(self, sentence):
        """
        :param sentence:[word1,word2,word3]
        :param min_count: 最小出现的次数
        :param max_count: 最大出现的次数
        :param max_feature: 总词语的最大数量
        :return:
        """
        for a in sentence:
            if a not in self.count:
                self.count[a] = 0
            self.count[a] += 1
 
        self.fited = True
 
    def build_vocab(self, min_count=1, max_count=None, max_feature=None):
 
        # 比最小的数量大和比最大的数量小的需要
        if min_count is not None:
            self.count = {k: v for k, v in self.count.items() if v >= min_count}
        if max_count is not None:
            self.count = {k: v for k, v in self.count.items() if v <= max_count}
 
        # 限制最大的数量
        if isinstance(max_feature, int):
            count = sorted(list(self.count.items()), key=lambda x: x[1])
            if max_feature is not None and len(count) > max_feature:
                count = count[-int(max_feature):]
            for w, _ in count:
                self.dict[w] = len(self.dict)
        else:
            for w in sorted(self.count.keys()):
                self.dict[w] = len(self.dict)
 
        # 准备一个index->word的字典
        self.inversed_dict = dict(zip(self.dict.values(), self.dict.keys()))
 
    def transform(self, sentence, max_len=None, add_eos=False):
        """
        实现吧句子转化为数组(向量)
        :param sentence:
        :param max_len:
        :return:
        """
        assert self.fited, "必须先进行fit操作"
 
        r = [self.to_index(i) for i in sentence]
        if max_len is not None:
            if max_len > len(sentence):
                if add_eos:
                    r += [self.EOS] + [self.PAD for _ in range(max_len - len(sentence) - 1)]
                else:
                    r += [self.PAD for _ in range(max_len - len(sentence))]
            else:
                if add_eos:
                    r = r[:max_len - 1]
                    r += [self.EOS]
                else:
                    r = r[:max_len]
        else:
            if add_eos:
                r += [self.EOS]
        # print(len(r),r)
        return r
 
    def inverse_transform(self, indices):
        """
        实现从数组 转化为 向量
        :param indices: [1,2,3....]
        :return:[word1,word2.....]
        """
        sentence = []
        for i in indices:
            word = self.to_word(i)
            sentence.append(word)
        return sentence
 
 
# 之后导入该word_sequence使用
word_sequence = pickle.load(open("./pkl/ws.pkl", "rb")) if not config.use_word else pickle.load(
    open("./pkl/ws_word.pkl", "rb"))
 
if __name__ == '__main__':
    from word_sequence import Word2Sequence
    from tqdm import tqdm
    import pickle
 
    word_sequence = Word2Sequence()
    # 词语级别
    input_path = "../corpus/input.txt"
    target_path = "../corpus/output.txt"
    for line in tqdm(open(input_path).readlines()):
        word_sequence.fit(line.strip().split())
    for line in tqdm(open(target_path).readlines()):
        word_sequence.fit(line.strip().split())
 
    # 使用max_feature=5000个数据
    word_sequence.build_vocab(min_count=5, max_count=None, max_feature=5000)
    print(len(word_sequence))
    pickle.dump(word_sequence, open("./pkl/ws.pkl", "wb"))

word_sequence.py:


class WordSequence(object):
    PAD_TAG = 'PAD'  # 填充标记
    UNK_TAG = 'UNK'  # 未知词标记
    SOS_TAG = 'SOS'  # start of sequence
    EOS_TAG = 'EOS'  # end of sequence
 
    PAD = 0
    UNK = 1
    SOS = 2
    EOS = 3
 
    def __init__(self):
        self.dict = {
            self.PAD_TAG: self.PAD,
            self.UNK_TAG: self.UNK,
            self.SOS_TAG: self.SOS,
            self.EOS_TAG: self.EOS
        }
        self.count = {}  # 保存词频词典
        self.fited = False
 
    def to_index(self, word):
        """
        word --> index
        :param word:
        :return:
        """
        assert self.fited == True, "必须先进行fit操作"
        return self.dict.get(word, self.UNK)
 
    def to_word(self, index):
        """
        index -- > word
        :param index:
        :return:
        """
        assert self.fited, '必须先进行fit操作'
        if index in self.inverse_dict:
            return self.inverse_dict[index]
        return self.UNK_TAG
 
    def fit(self, sentence):
        """
        传入句子,统计词频
        :param sentence:
        :return:
        """
        for word in sentence:
            # 对word出现的频率进行统计,当word不在sentence时,返回值是0,当word在sentence中时,返回+1,以此进行累计计数
            # self.count[word] = self.dict.get(word, 0) + 1
            if word not in self.count:
                self.count[word] = 0
            self.count[word] += 1
        self.fited = True
 
    def build_vocab(self, min_count=2, max_count=None, max_features=None):
        """
        构造词典
        :param min_count:最小词频
        :param max_count: 最大词频
        :param max_features: 词典中词的数量
        :return:
        """
        # self.count.pop(key),和del self.count[key] 无法在遍历self.count的同时进行删除key.因此浅拷贝temp后对temp遍历并删除self.count
        temp = self.count.copy()
        for key in temp:
            cur_count = self.count.get(key, 0)  # 当前词频
            if min_count is not None:
                if cur_count < min_count:
                    del self.count[key]
            if max_count is not None:
                if cur_count > max_count:
                    del self.count[key]
            if max_features is not None:
                self.count = dict(sorted(list(self.count.items()), key=lambda x: x[1], reversed=True)[:max_features])
        for key in self.count:
            self.dict[key] = len(self.dict)
        #  准备一个index-->word的字典
        self.inverse_dict = dict(zip(self.dict.values(), self.dict.keys()))
 
    def transforms(self, sentence, max_len=10, add_eos=False):
        """
        把sentence转化为序列
        :param sentence: 传入的句子
        :param max_len: 句子的最大长度
        :param add_eos: 是否添加结束符
        add_eos : True时,输出句子长度为max_len + 1
        add_eos : False时,输出句子长度为max_len
        :return:
        """
        assert self.fited, '必须先进行fit操作!'
        if len(sentence) > max_len:
            sentence = sentence[:max_len]
        #  提前计算句子长度,实现ass_eos后,句子长度统一
        sentence_len = len(sentence)
        #  sentence[1,3,4,5,UNK,EOS,PAD,....]
        if add_eos:
            sentence += [self.EOS_TAG]
        if sentence_len < max_len:
            #  句子长度不够,用PAD来填充
            sentence += (max_len - sentence_len) * [self.PAD_TAG]
        #  对于新出现的词采用特殊标记
        result = [self.dict.get(i, self.UNK) for i in sentence]
 
        return result
 
    def invert_transform(self, indices):
        """
        序列转化为sentence
        :param indices:
        :return:
        """
        # return [self.inverse_dict.get(i, self.UNK_TAG) for i in indices]
        result = []
        for i in indices:
            if self.inverse_dict[i] == self.EOS_TAG:
                break
            result.append(self.inverse_dict.get(i, self.UNK_TAG))
        return result
 
    def __len__(self):
        return len(self.dict)
 
 
if __name__ == '__main__':
    num_sequence = WordSequence()
    print(num_sequence.dict)
    str1 = ['中国', '您好', '我爱你', '中国', '我爱你', '北京']
    num_sequence.fit(str1)
    num_sequence.build_vocab()
    print(num_sequence.transforms(str1))
    print(num_sequence.dict)
    print(num_sequence.inverse_dict)
    print(num_sequence.invert_transform([5, 4]))  # 这儿要传列表

运行结果:

四、构建Dataset和DataLoader

创建dataset.py 文件,准备数据集


import config
import torch
from torch.utils.data import Dataset, DataLoader
from word_sequence import WordSequence
 
 
class ChatDataset(Dataset):
    def __init__(self):
        self.input_path = config.chatbot_input_path
        self.target_path = config.chatbot_target_path
        self.input_lines = open(self.input_path, encoding='utf-8').readlines()
        self.target_lines = open(self.target_path, encoding='utf-8').readlines()
        assert len(self.input_lines) == len(self.target_lines), 'input和target长度不一致'
 
    def __getitem__(self, item):
        input = self.input_lines[item].strip().split()
        target = self.target_lines[item].strip().split()
        if len(input) == 0 or len(target) == 0:
            input = self.input_lines[item + 1].strip().split()
            target = self.target_lines[item + 1].strip().split()
        # 此处句子的长度如果大于max_len,那么应该返回max_len
        input_length = min(len(input), config.max_len)
        target_length = min(len(target), config.max_len)
        return input, target, input_length, target_length
 
    def __len__(self):
        return len(self.input_lines)
 
 
def collate_fn(batch):
    #  1.排序
    batch = sorted(batch, key=lambda x: x[2], reversed=True)
    input, target, input_length, target_length = zip(*batch)
 
    #  2.进行padding的操作
    input = torch.LongTensor([WordSequence.transform(i, max_len=config.max_len) for i in input])
    target = torch.LongTensor([WordSequence.transforms(i, max_len=config.max_len, add_eos=True) for i in target])
    input_length = torch.LongTensor(input_length)
    target_length = torch.LongTensor(target_length)
 
    return input, target, input_length, target_length
 
 
data_loader = DataLoader(dataset=ChatDataset(), batch_size=config.batch_size, shuffle=True, collate_fn=collate_fn,
                         drop_last=True)
 
 
if __name__ == '__main__':
    print(len(data_loader))
    for idx, (input, target, input_length, target_length) in enumerate(data_loader):
        print(idx)
        print(input)
        print(target)
        print(input_length)
        print(target_length)

五、完成encoder编码器逻辑

encode.py:


import torch.nn as nn
import config
from torch.nn.utils.rnn import pad_packed_sequence, pack_padded_sequence
 
 
class Encoder(nn.Module):
    def __init__(self):
        super(Encoder, self).__init__()
        #  torch.nn.Embedding(num_embeddings词典大小即不重复词数,embedding_dim单个词用多长向量表示)
        self.embedding = nn.Embedding(
            num_embeddings=len(config.word_sequence.dict),
            embedding_dim=config.embedding_dim,
            padding_idx=config.word_sequence.PAD
        )
        self.gru = nn.GRU(
            input_size=config.embedding_dim,
            num_layers=config.num_layer,
            hidden_size=config.hidden_size,
            bidirectional=False,
            batch_first=True
        )
 
    def forward(self, input, input_length):
        """
        :param input: [batch_size, max_len]
        :return:
        """
        embedded = self.embedding(input)  # embedded [batch_size, max_len, embedding_dim]
        # 加速循环过程
        embedded = pack_padded_sequence(embedded, input_length, batch_first=True)  # 打包
        out, hidden = self.gru(embedded)
        out, out_length = pad_packed_sequence(out, batch_first=True, padding_value=config.num_sequence.PAD)  # 解包
 
        # hidden即h_n [num_layer*[1/2],batchsize, hidden_size]
        # out : [batch_size, seq_len/max_len, hidden_size]
        return out, hidden, out_length
 
 
if __name__ == '__main__':
    from dataset import data_loader
 
    encoder = Encoder()
    print(encoder)
    for input, target, input_length, target_length in data_loader:
        out, hidden, out_length = encoder(input, input_length)
        print(input.size())
        print(out.size())
        print(hidden.size())
        print(out_length)
        break

六、完成decoder解码器的逻辑

decode.py:


import torch
import torch.nn as nn
import config
import torch.nn.functional as F
from word_sequence import WordSequence
 
 
class Decode(nn.Module):
    def __init__(self):
        super().__init__()
        self.max_seq_len = config.max_len
        self.vocab_size = len(WordSequence)
        self.embedding_dim = config.embedding_dim
        self.dropout = config.dropout
 
        self.embedding = nn.Embedding(num_embeddings=self.vocab_size, embedding_dim=self.embedding_dim,
                                      padding_idx=WordSequence.PAD)
        self.gru = nn.GRU(input_size=self.embedding_dim, hidden_size=config.hidden_size, num_layers=1, batch_first=True,
                          dropout=self.dropout)
        self.log_softmax = nn.LogSoftmax()
        self.fc = nn.Linear(config.hidden_size, self.vocab_size)
 
    def forward(self, encoder_hidden, target, target_length):
        # encoder_hidden [batch_size,hidden_size]
        # target [batch_size,seq-len]
        decoder_input = torch.LongTensor([[WordSequence.SOS]] * config.batch_size).to(config.device)
        decoder_outputs = torch.zeros(config.batch_size, config.max_len, self.vocab_size).to(
            config.device)  # [batch_size,seq_len,14]
 
        decoder_hidden = encoder_hidden  # [batch_size,hidden_size]
 
        for t in range(config.max_len):
            decoder_output_t, decoder_hidden = self.forward_step(decoder_input, decoder_hidden)
            decoder_outputs[:, t, :] = decoder_output_t
            value, index = torch.topk(decoder_output_t, 1)  # index [batch_size,1]
            decoder_input = index
        return decoder_outputs, decoder_hidden
 
    def forward_step(self, decoder_input, decoder_hidden):
        """
        :param decoder_input:[batch_size,1]
        :param decoder_hidden:[1,batch_size,hidden_size]
        :return:[batch_size,vocab_size],decoder_hidden:[1,batch_size,didden_size]
        """
        embeded = self.embedding(decoder_input)  # embeded: [batch_size,1 , embedding_dim]
        out, decoder_hidden = self.gru(embeded, decoder_hidden)  # out [1, batch_size, hidden_size]
        out = out.squeeze(0)
        out = F.log_softmax(self.fc(out), dim=1)  # [batch_Size, vocab_size]
        out = out.squeeze(0)
        # print("out size:",out.size(),decoder_hidden.size())
        return out, decoder_hidden

关于 decoder_outputs[:,t,:] = decoder_output_t的演示


decoder_outputs 形状 [batch_size, seq_len, vocab_size]
decoder_output_t 形状[batch_size, vocab_size]

示例代码:


import torch
 
a = torch.zeros((2, 3, 5))
print(a.size())
print(a)
 
b = torch.randn((2, 5))
print(b.size())
print(b)
 
a[:, 0, :] = b
print(a.size())
print(a)

运行结果:

关于torch.topk, torch.max(),torch.argmax()


value, index = torch.topk(decoder_output_t , k = 1)
decoder_output_t [batch_size, vocab_size]

示例代码:


import torch
 
a = torch.randn((3, 5))
print(a.size())
print(a)
 
values, index = torch.topk(a, k=1)
print(values)
print(index)
print(index.size())
 
values, index = torch.max(a, dim=-1)
print(values)
print(index)
print(index.size())
 
index = torch.argmax(a, dim=-1)
print(index)
print(index.size())
 
index = a.argmax(dim=-1)
print(index)
print(index.size())

运行结果:

若使用teacher forcing ,将采用下次真实值作为下个time step的输入


# 注意unsqueeze 相当于浅拷贝,不会对原张量进行修改
 decoder_input = target[:,t].unsqueeze(-1)
 target 形状 [batch_size, seq_len]
 decoder_input 要求形状[batch_size, 1]

示例代码:


import torch
 
a = torch.randn((3, 5))
print(a.size())
print(a)
 
b = a[:, 3]
print(b.size())
print(b)
c = b.unsqueeze(-1)
print(c.size())
print(c)

运行结果:

七、完成seq2seq的模型

seq2seq.py:


import torch
import torch.nn as nn
 
 
class Seq2Seq(nn.Module):
    def __init__(self, encoder, decoder):
        super(Seq2Seq, self).__init__()
        self.encoder = encoder
        self.decoder = decoder
 
    def forward(self, input, target, input_length, target_length):
        encoder_outputs, encoder_hidden = self.encoder(input, input_length)
        decoder_outputs, decoder_hidden = self.decoder(encoder_hidden, target, target_length)
        return decoder_outputs, decoder_hidden
 
    def evaluation(self, inputs, input_length):
        encoder_outputs, encoder_hidden = self.encoder(inputs, input_length)
        decoded_sentence = self.decoder.evaluation(encoder_hidden)
        return decoded_sentence

八、完成训练逻辑

为了加速训练,可以考虑在gpu上运行,那么在我们自顶一个所以的tensor和model都需要转化为CUDA支持的类型。

当前的数据量为500多万条,在GTX1070(8G显存)上训练,大概需要90分一个epoch,耐心的等待吧

train.py:


import torch
import config
from torch import optim
import torch.nn as nn
from encode import Encoder
from decode import Decoder
from seq2seq import Seq2Seq
from dataset import data_loader as train_dataloader
from word_sequence import WordSequence
 
encoder = Encoder()
decoder = Decoder()
model = Seq2Seq(encoder, decoder)
 
# device在config文件中实现
model.to(config.device)
 
print(model)
 
model.load_state_dict(torch.load("model/seq2seq_model.pkl"))
optimizer = optim.Adam(model.parameters())
optimizer.load_state_dict(torch.load("model/seq2seq_optimizer.pkl"))
criterion = nn.NLLLoss(ignore_index=WordSequence.PAD, reduction="mean")
 
 
def get_loss(decoder_outputs, target):
    target = target.view(-1)  # [batch_size*max_len]
    decoder_outputs = decoder_outputs.view(config.batch_size * config.max_len, -1)
    return criterion(decoder_outputs, target)
 
 
def train(epoch):
    for idx, (input, target, input_length, target_len) in enumerate(train_dataloader):
        input = input.to(config.device)
        target = target.to(config.device)
        input_length = input_length.to(config.device)
        target_len = target_len.to(config.device)
 
        optimizer.zero_grad()
        ##[seq_len,batch_size,vocab_size] [batch_size,seq_len]
        decoder_outputs, decoder_hidden = model(input, target, input_length, target_len)
        loss = get_loss(decoder_outputs, target)
        loss.backward()
        optimizer.step()
 
        print('Train Epoch: {} [{}/{} ({:.0f}%)]\tLoss: {:.6f}'.format(
            epoch, idx * len(input), len(train_dataloader.dataset),
                   100. * idx / len(train_dataloader), loss.item()))
 
        torch.save(model.state_dict(), "model/seq2seq_model.pkl")
        torch.save(optimizer.state_dict(), 'model/seq2seq_optimizer.pkl')
 
 
if __name__ == '__main__':
    for i in range(10):
        train(i)

训练10个epoch之后的效果如下,可以看出损失依然很高:


Train Epoch: 9 [2444544/4889919 (50%)]	Loss: 4.923604
Train Epoch: 9 [2444800/4889919 (50%)]	Loss: 4.364594
Train Epoch: 9 [2445056/4889919 (50%)]	Loss: 4.613254
Train Epoch: 9 [2445312/4889919 (50%)]	Loss: 4.143538
Train Epoch: 9 [2445568/4889919 (50%)]	Loss: 4.412729
Train Epoch: 9 [2445824/4889919 (50%)]	Loss: 4.516526
Train Epoch: 9 [2446080/4889919 (50%)]	Loss: 4.124945
Train Epoch: 9 [2446336/4889919 (50%)]	Loss: 4.777015
Train Epoch: 9 [2446592/4889919 (50%)]	Loss: 4.358538
Train Epoch: 9 [2446848/4889919 (50%)]	Loss: 4.513412
Train Epoch: 9 [2447104/4889919 (50%)]	Loss: 4.202757
Train Epoch: 9 [2447360/4889919 (50%)]	Loss: 4.589584

九、评估逻辑

decoder 中添加评估方法


def evaluate(self, encoder_hidden):
	 """
	 评估, 和fowward逻辑类似
	 :param encoder_hidden: encoder最后time step的隐藏状态 [1, batch_size, hidden_size]
	 :return:
	 """
	 batch_size = encoder_hidden.size(1)
	 # 初始化一个[batch_size, 1]的SOS张量,作为第一个time step的输出
	 decoder_input = torch.LongTensor([[config.target_ws.SOS]] * batch_size).to(config.device)
	 # encoder_hidden 作为decoder第一个时间步的hidden [1, batch_size, hidden_size]
	 decoder_hidden = encoder_hidden
	 # 初始化[batch_size, seq_len, vocab_size]的outputs 拼接每个time step结果
	 decoder_outputs = torch.zeros((batch_size, config.chatbot_target_max_len, self.vocab_size)).to(config.device)
	 # 初始化一个空列表,存储每次的预测序列
	 predict_result = []
	 # 对每个时间步进行更新
	 for t in range(config.chatbot_target_max_len):
	     decoder_output_t, decoder_hidden = self.forward_step(decoder_input, decoder_hidden)
	     # 拼接每个time step,decoder_output_t [batch_size, vocab_size]
	     decoder_outputs[:, t, :] = decoder_output_t
	     # 由于是评估,需要每次都获取预测值
	     index = torch.argmax(decoder_output_t, dim = -1)
	     # 更新下一时间步的输入
	     decoder_input = index.unsqueeze(1)
	     # 存储每个时间步的预测序列
	     predict_result.append(index.cpu().detach().numpy()) # [[batch], [batch]...] ->[seq_len, vocab_size]
	 # 结果转换为ndarry,每行是一个预测结果即单个字对应的索引, 所有行为seq_len长度
	 predict_result = np.array(predict_result).transpose()  # (batch_size, seq_len)的array
	 return decoder_outputs, predict_result

eval.py


import torch
import torch.nn as nn
import torch.nn.functional as F
from dataset import get_dataloader
import config
import numpy as np
from Seq2Seq import Seq2SeqModel
import os
from tqdm import tqdm
 
 
 
model = Seq2SeqModel().to(config.device)
if os.path.exists('./model/chatbot_model.pkl'):
    model.load_state_dict(torch.load('./model/chatbot_model.pkl'))
 
 
def eval():
    model.eval()
    loss_list = []
    test_data_loader = get_dataloader(train = False)
    with torch.no_grad():
        bar = tqdm(test_data_loader, desc = 'testing', total = len(test_data_loader))
        for idx, (input, target, input_length, target_length) in enumerate(bar):
            input = input.to(config.device)
            target = target.to(config.device)
            input_length = input_length.to(config.device)
            target_length = target_length.to(config.device)
            # 获取模型的预测结果
            decoder_outputs, predict_result = model.evaluation(input, input_length)
            # 计算损失
            loss = F.nll_loss(decoder_outputs.view(-1, len(config.target_ws)), target.view(-1), ignore_index = config.target_ws.PAD)
            loss_list.append(loss.item())
            bar.set_description('idx{}:/{}, loss:{}'.format(idx, len(test_data_loader), np.mean(loss_list)))
 
 
if __name__ == '__main__':
    eval()

interface.py:


from cut_sentence import cut
import torch
import config
from Seq2Seq import Seq2SeqModel
import os
 
 
# 模拟聊天场景,对用户输入进来的话进行回答
def interface():
    # 加载训练集好的模型
    model = Seq2SeqModel().to(config.device)
    assert os.path.exists('./model/chatbot_model.pkl') , '请先对模型进行训练!'
    model.load_state_dict(torch.load('./model/chatbot_model.pkl'))
    model.eval()
 
    while True:
        # 输入进来的原始字符串,进行分词处理
        input_string = input('me>>:')
        if input_string == 'q':
            print('下次再聊')
            break
        input_cuted = cut(input_string, by_word = True)
        # 进行序列转换和tensor封装
        input_tensor = torch.LongTensor([config.input_ws.transfrom(input_cuted, max_len = config.chatbot_input_max_len)]).to(config.device)
        input_length_tensor = torch.LongTensor([len(input_cuted)]).to(config.device)
        # 获取预测结果
        outputs, predict = model.evaluation(input_tensor, input_length_tensor)
        # 进行序列转换文本
        result = config.target_ws.inverse_transform(predict[0])
        print('chatbot>>:', result)
 
 
if __name__ == '__main__':
    interface()

config.py:


import torch
from word_sequence import WordSequence
 
 
chatbot_input_path = './corpus/input.txt'
chatbot_target_path = './corpus/target.txt'
 
word_sequence = WordSequence()
max_len = 9
batch_size = 128
embedding_dim = 100
num_layer = 1
hidden_size = 64
dropout = 0.1
model_save_path = './model.pkl'
optimizer_save_path = './optimizer.pkl'
device = torch.device('cuda:0' if torch.cuda.is_available() else 'cpu')

cut.py:


"""
分词
"""
import jieba
import config1
import string
import jieba.posseg as psg  # 返回词性
from lib.stopwords import stopwords
 
# 加载词典
jieba.load_userdict(config1.user_dict_path)
# 准备英文字符
letters = string.ascii_lowercase + '+'
 
 
def cut_sentence_by_word(sentence):
    """实现中英文分词"""
    temp = ''
    result = []
    for word in sentence:
        if word.lower() in letters:
            # 如果是英文字符,则进行拼接空字符串
            temp += word
        else:
            # 遇到汉字后,把英文先添加到结果中
            if temp != '':
                result.append(temp.lower())
                temp = ''
            result.append(word.strip())
    if temp != '':
        # 若英文出现在最后
        result.append(temp.lower())
    return result
 
 
def cut(sentence, by_word=False, use_stopwords=True, with_sg=False):
    """
    :param sentence: 句子
    :param by_word: T根据单个字分词或者F句子
    :param use_stopwords: 是否使用停用词,默认False
    :param with_sg: 是否返回词性
    :return:
    """
    if by_word:
        result = cut_sentence_by_word(sentence)
    else:
        result = psg.lcut(sentence)
        # psg 源码返回i.word,i.flag 即词,定义的词性
        result = [(i.word, i.flag) for i in result]
        # 是否返回词性
        if not with_sg:
            result = [i[0] for i in result]
    # 是否使用停用词
    if use_stopwords:
        result = [i for i in result if i not in stopwords]
 
    return result

到此这篇关于python通过Seq2Seq实现闲聊机器人的文章就介绍到这了,更多相关Seq2Seq实现闲聊机器人内容请搜索编程网以前的文章或继续浏览下面的相关文章希望大家以后多多支持编程网!

免责声明:

① 本站未注明“稿件来源”的信息均来自网络整理。其文字、图片和音视频稿件的所属权归原作者所有。本站收集整理出于非商业性的教育和科研之目的,并不意味着本站赞同其观点或证实其内容的真实性。仅作为临时的测试数据,供内部测试之用。本站并未授权任何人以任何方式主动获取本站任何信息。

② 本站未注明“稿件来源”的临时测试数据将在测试完成后最终做删除处理。有问题或投稿请发送至: 邮箱/279061341@qq.com QQ/279061341

python通过Seq2Seq实现闲聊机器人

下载Word文档到电脑,方便收藏和打印~

下载Word文档

猜你喜欢

案例:python实现聊天机器人

import pickledata = {"你有女朋友吗":"没有","我们可以交往吗":"可以","今晚约不约":"约","去哪家餐厅":"麦当劳"} with open("db.pkl",'wb') as f: f.write
2023-01-31

Python NLP开发之实现聊天机器人

这篇文章主要为大家介绍了Python如何实现聊天机器人,即使用自然语言处理 (NLP) 来帮助用户通过文本、图形或语音与 Web 服务或应用进行交互,感兴趣的可以了解一下
2023-05-19

python怎么实现语音聊天机器人

要实现一个语音聊天机器人,你可以使用Python中的语音识别和语音合成库来实现。首先,你需要一个能够将语音转换为文字的语音识别库。其中一个流行的语音识别库是SpeechRecognition。你可以使用pip安装它:```pip insta
2023-08-31

怎么用Python实现聊天机器人项目

本篇内容主要讲解“怎么用Python实现聊天机器人项目”,感兴趣的朋友不妨来看看。本文介绍的方法操作简单快捷,实用性强。下面就让小编来带大家学习“怎么用Python实现聊天机器人项目”吧!先决条件为了实现聊天机器人,将使用一个深度学习库Ke
2023-06-16

Python中怎么实现一个聊天机器人

Python中怎么实现一个聊天机器人,相信很多没有经验的人对此束手无策,为此本文总结了问题出现的原因和解决方法,通过这篇文章希望你能解决这个问题。1. 创建虚拟环境pipenv是一个轻松创建虚拟环境的python库。pip install
2023-06-16

Java怎么实现聊天机器人

小编给大家分享一下Java怎么实现聊天机器人,相信大部分人都还不怎么了解,因此分享这篇文章给大家参考一下,希望大家阅读完这篇文章后大有收获,下面让我们一起去了解一下吧!具体内容如下Client代码:package GUISocket.cha
2023-06-20

怎么用Ajax实现聊天机器人

本篇内容介绍了“怎么用Ajax实现聊天机器人”的有关知识,在实际案例的操作过程中,不少人都会遇到这样的困境,接下来就让小编带领大家学习一下如何处理这些情况吧!希望大家仔细阅读,能够学有所成! 功能实现:点击发送按钮事件将用户输入的内容渲染到
2023-06-25

Java中怎么实现聊天机器人

小编给大家分享一下Java中怎么实现聊天机器人,相信大部分人都还不怎么了解,因此分享这篇文章给大家参考一下,希望大家阅读完这篇文章后大有收获,下面让我们一起去了解一下吧!具体内容如下服务器的代码:package Day02;import j
2023-06-20

Python基于Google Bard实现交互式聊天机器人

这篇文章主要为大家介绍了Python基于Google Bard实现交互式聊天机器人示例详解,有需要的朋友可以借鉴参考下,希望能够有所帮助,祝大家多多进步,早日升职加薪
2023-03-24

编程热搜

  • Python 学习之路 - Python
    一、安装Python34Windows在Python官网(https://www.python.org/downloads/)下载安装包并安装。Python的默认安装路径是:C:\Python34配置环境变量:【右键计算机】--》【属性】-
    Python 学习之路 - Python
  • chatgpt的中文全称是什么
    chatgpt的中文全称是生成型预训练变换模型。ChatGPT是什么ChatGPT是美国人工智能研究实验室OpenAI开发的一种全新聊天机器人模型,它能够通过学习和理解人类的语言来进行对话,还能根据聊天的上下文进行互动,并协助人类完成一系列
    chatgpt的中文全称是什么
  • C/C++中extern函数使用详解
  • C/C++可变参数的使用
    可变参数的使用方法远远不止以下几种,不过在C,C++中使用可变参数时要小心,在使用printf()等函数时传入的参数个数一定不能比前面的格式化字符串中的’%’符号个数少,否则会产生访问越界,运气不好的话还会导致程序崩溃
    C/C++可变参数的使用
  • css样式文件该放在哪里
  • php中数组下标必须是连续的吗
  • Python 3 教程
    Python 3 教程 Python 的 3.0 版本,常被称为 Python 3000,或简称 Py3k。相对于 Python 的早期版本,这是一个较大的升级。为了不带入过多的累赘,Python 3.0 在设计的时候没有考虑向下兼容。 Python
    Python 3 教程
  • Python pip包管理
    一、前言    在Python中, 安装第三方模块是通过 setuptools 这个工具完成的。 Python有两个封装了 setuptools的包管理工具: easy_install  和  pip , 目前官方推荐使用 pip。    
    Python pip包管理
  • ubuntu如何重新编译内核
  • 改善Java代码之慎用java动态编译

目录